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Download PDFOpen PDF in browserEfficient and Scalable Self-Healing Databases Using Meta-Learning and Dependency-Driven RecoveryEasyChair Preprint 158567 pages•Date: February 21, 2025AbstractThis study explored the development of a novel self-healing framework for databases using meta-learning and reinforcement learning techniques. The primary objective was to address the challenges of real-time adaptability and minimal retraining in dynamic workload environments. The proposed approach integrated Model-Agnostic Meta-Learning (MAML) with reinforcement learning to enable anomaly detection and corrective actions that adapted swiftly to evolving database conditions. Multi-objective optimization was employed to balance performance, resource utilization, and cost efficiency during the healing process. Graph Neural Networks (GNNs) were incorpo- rated to model interdependencies within database components, ensuring holistic recovery strategies. Data efficiency was en- hanced through synthetic task augmentation and self-supervised learning, enabling effective training in sparse data regimes. To promote trust and transparency, explainable AI techniques were integrated to provide interpretable insights into anomaly detection and healing actions. Federated meta-learning further enabled privacy-preserving adaptability in distributed database environments. The framework demonstrated significant improve- ments in adaptability, efficiency, and reliability, contributing to advancements in database management and self-healing systems. Keyphrases: Cascading Failure Prediction, Database Dependency Modeling, Database Management Systems(DBMS), Dynamic Workload Adaptation, Explainable AI (XAI), Graph Neural Networks (GNNs), Model-Agnostic Meta-Learning (MAML), Proactive Anomaly Prevention, RL-Based Recovery, Real-Time Adaptability, Recovery Optimization, Reinforcement Learning (RL), Scalable Database Systems, Self-Healing Databases, Task Generalization, anomaly detection, federated meta-learning, meta-learning, multi-objective optimization Download PDFOpen PDF in browser |
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